FRM Financial Risk Meter for Emerging Markets

Souhir Ben Amor, Michael Althof, W. Härdle
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引用次数: 3

Abstract

The fast-growing Emerging Market (EM) economies and their improved transparency and liquidity have attracted international investors. However, the external price shocks can result in a higher level of volatility as well as domestic policy instability. Therefore, an efficient risk measure and hedging strategies are needed to help investors protect their investments against this risk. In this paper, a daily systemic risk measure, called FRM (Financial Risk Meter) is proposed. The FRM-EM is applied to capture systemic risk behavior embedded in the returns of the 25 largest EMs FIs, covering the BRIMST (Brazil, Russia, India, Mexico, South Africa, and Turkey), and thereby reflects the financial linkages between these economies. Concerning the Macro factors, in addition to the Adrian and Brunnermeier (2016) Macro, we include the EM sovereign yield spread over respective US Treasuries and the above-mentioned countries currencies. The results indicated that the FRM of EMs FIs reached its maximum during the US financial crisis following by COVID 19 crisis and the Macro factors explain the BRIMST FIs with various degrees of sensibility. We then study the relationship between those factors and the tail event network behavior to build our policy recommendations to help the investors to choose the suitable market for in-vestment and tail-event optimized portfolios. For that purpose, an overlapping region between portfolio optimization strategies and FRM network centrality is developed. We propose a robust and well-diversified tail-event and cluster risk-sensitive portfolio allocation model and compare it to more classical approaches
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新兴市场的FRM金融风险量表
快速增长的新兴市场经济体及其透明度和流动性的提高吸引了国际投资者。然而,外部价格冲击可能导致更高水平的波动以及国内政策的不稳定。因此,需要一种有效的风险度量和对冲策略来帮助投资者保护他们的投资免受这种风险的影响。本文提出了一种每日系统风险度量,称为FRM (Financial risk Meter)。FRM-EM用于捕捉25个最大的新兴市场金融机构回报中隐含的系统性风险行为,涵盖了BRIMST(巴西、俄罗斯、印度、墨西哥、南非和土耳其),从而反映了这些经济体之间的金融联系。关于宏观因素,除了Adrian和Brunnermeier(2016)宏观因素外,我们还包括新兴市场主权债券相对于各自美国国债和上述国家货币的利差。结果表明,新兴市场金融机构的FRM在美国金融危机期间达到最大值,宏观因素对金融机构的FRM具有不同程度的敏感性。然后研究这些因素与尾事件网络行为之间的关系,构建政策建议,以帮助投资者选择合适的投资市场和尾事件优化的投资组合。为此,建立了投资组合优化策略与FRM网络中心性之间的重叠区域。我们提出了一个鲁棒的、多样化的尾事件和聚类风险敏感的投资组合配置模型,并将其与更经典的方法进行了比较
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